prognostic enrichment design in clinical trials for autosomal dominant polycystic kidney disease: the tempo 3:4 clinical trial
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2016
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Abstract
Patients with slowly progressive autosomal dominant polycystic kidney disease (ADPKD) are unlikely to experience outcomes during randomized controlled trials (RCTs). An image classification of ADPKD into typical (diffuse cyst distribution) class 1A to E (by age- and height-adjusted total kidney volume [TKV]) and atypical (asymmetric cyst distribution) class 2 was proposed for prognostic enrichment design, recommending inclusion of only classes 1C to 1E in RCTs.
Methods: A post hoc exploratory analysis was conducted of the TEMPO 3:4 Trial, a prospective, randomized, double-blinded, controlled clinical trial in adult subjects with ADPKD, an estimated creatinine clearance >60 ml/min and total kidney volume >750 ml.
Results: Due to the entry criteria, the study population of TEMPO 3:4 was enriched for classes 1C-E (89.5 % of 1436 patients with baseline magnetic resonance images) compared to unselected populations (e.g., 60.5% of 590 Mayo Clinic patients). The effects of tolvaptan on TKV and eGFR slopes were greater in classes 1C to E than in 1B. In TEMPO 3:4, tolvaptan reduced TKV and eGFR slopes from 5.51% to 2.80% per year and from −3.70 to −2.78 ml/min/1.73 m2 per year, and lowered the risk for a composite endpoint of clinical progression events (hazard ratio = 0.87). Restricting enrollment to classes 1C to E would have reduced TKV and eGFR slopes from 5.78% to 2.91% per year and from −3.93 to −2.82 ml/min/1.73 m2 per year, and the risk of the composite endpoint (hazard ratio = 0.84, P = 0.003), with 10.5% fewer patients.
Discussion: Prognostic enrichment strategies such as the entry criteria used for TEMPO 3:4 or preferably the proposed image classification should be used in RCTs for ADPKD to increase power and to reduce cost.
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| Reference Key |
irazabal2016kidneyprognostic
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| Authors | ;Maria V. Irazabal;Jaime D. Blais;Ronald D. Perrone;Ron T. Gansevoort;Arlene B. Chapman;Olivier Devuyst;Eiji Higashihara;Peter C. Harris;Wen Zhou;John Ouyang;Frank S. Czerwiec;Vicente E. Torres |
| Journal | Soft matter |
| Year | 2016 |
| DOI |
10.1016/j.ekir.2016.08.001
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